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使用多普勒超声对脑栓塞进行计算机化检测并与伪影进行鉴别。

Computerized detection of cerebral emboli and discrimination from artifact using Doppler ultrasound.

作者信息

Markus H, Loh A, Brown M M

机构信息

Division of Clinical Neuroscience, St George's Hospital Medical School, London, UK.

出版信息

Stroke. 1993 Nov;24(11):1667-72. doi: 10.1161/01.str.24.11.1667.

Abstract

BACKGROUND AND PURPOSE

Transcranial Doppler ultrasound can detect circulating cerebral emboli. Monitoring of patients with potential embolic sources may allow identification of high-risk patients who can then be selected for prophylactic treatment. However, practical patient monitoring will require automated programs that can detect emboli and differentiate them from artifact.

METHODS

A new off-line algorithm for the detection of emboli, which detects the characteristic relative power increase occurring with an embolus, was evaluated in both an animal model and in patients. (1) In a sheep model, solid embolic materials (thrombus, platelet aggregates, and atheroma) were introduced into the proximal carotid artery while the distal carotid artery or a major branch was insonated. The signals resulting from 77 emboli (mean size, 1.77 mm) were studied and compared with the Doppler signals resulting from artifact. (2) In patients, 100 embolic signals occurring in three patients were analyzed and compared with signals associated with artifact in the same patients.

RESULTS

(1) In the sheep model, emboli resulted in a short-duration, high-intensity signal, but intensity increase alone did not distinguish between emboli and artifact. In contrast, the algorithm discriminated embolus from artifact with a sensitivity of 98.7% and a specificity of 98.0%. (2) In patient studies, embolic signals were differentiated from artifact with a sensitivity of 97.2% and a specificity of 97.0% by the algorithm.

CONCLUSIONS

Using such an algorithm, detection of cerebral emboli and discrimination from artifact are possible with a high sensitivity and specificity. Incorporation of such an algorithm into an on-line system should make prolonged patient monitoring practical.

摘要

背景与目的

经颅多普勒超声能够检测循环中的脑栓子。对具有潜在栓子来源的患者进行监测,可能有助于识别高危患者,进而为预防性治疗选择合适对象。然而,实际的患者监测需要能够检测栓子并将其与伪差区分开来的自动化程序。

方法

一种用于检测栓子的新型离线算法,该算法可检测栓子出现时特征性的相对功率增加,在动物模型和患者中均进行了评估。(1)在绵羊模型中,将固体栓子材料(血栓、血小板聚集体和动脉粥样硬化斑块)注入颈总动脉近端,同时对颈总动脉远端或主要分支进行超声检查。研究了77个栓子(平均大小为1.77毫米)产生的信号,并与伪差产生的多普勒信号进行比较。(2)在患者中,分析了3例患者出现的100个栓子信号,并与同一患者中与伪差相关的信号进行比较。

结果

(1)在绵羊模型中,栓子导致短持续时间、高强度信号,但仅强度增加无法区分栓子和伪差。相比之下,该算法区分栓子和伪差的灵敏度为98.7%,特异度为98.0%。(2)在患者研究中,该算法区分栓子信号和伪差的灵敏度为97.2%,特异度为97.0%。

结论

使用这样一种算法,可以高灵敏度和特异度检测脑栓子并与伪差进行区分。将这种算法纳入在线系统应能使对患者的长期监测切实可行。

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